Early warning signals of financial crises with multi-scale quantile regressions of log-periodic power law singularities

Open access
Date
2016-11-02Type
- Journal Article
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Abstract
We augment the existing literature using the Log-Periodic Power Law Singular (LPPLS) structures in the log-price dynamics to diagnose financial bubbles by providing three main innovations. First, we introduce the quantile regression to the LPPLS detection problem. This allows us to disentangle (at least partially) the genuine LPPLS signal and the a priori unknown complicated residuals. Second, we propose to combine the many quantile regressions with a multi-scale analysis, which aggregates and consolidates the obtained ensembles of scenarios. Third, we define and implement the so-called DS LPPLS Confidence™ and Trust™ indicators that enrich considerably the diagnostic of bubbles. Using a detailed study of the “S&P 500 1987” bubble and presenting analyses of 16 historical bubbles, we show that the quantile regression of LPPLS signals contributes useful early warning signals. The comparison between the constructed signals and the price development in these 16 historical bubbles demonstrates their significant predictive ability around the real critical time when the burst/rally occurs. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000122690Publication status
publishedExternal links
Journal / series
PLoS ONEVolume
Pages / Article No.
Publisher
Public Library of ScienceOrganisational unit
03738 - Sornette, Didier / Sornette, Didier
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Citations
Cited null times in
Web of Science
Cited 12 times in
Scopus
ETH Bibliography
yes
Altmetrics

